Universal Machinery Fault Diagnosis Dataset (UMFDD) A Unit Normalized Multi Signal Repository for Machinery Fault Diagnosis 候选 · 未审核

doi:10.17632/3bz24t6tf4

The Universal Machinery Fault Diagnosis Dataset (UMFDD) is a multi signal repository created for machinery fault diagnosis. This dataset integrates multiple publicly available and experimentally collected datasets into standardized units allowing for cross domain learning and evaluation. All signals are converted into a physically consistent representation through unit normalization. Vibration signals originally measured in acceleration m/s^2 are transformed into velocity m/s while acoustic signals are converted from voltage to sound pressure and subsequently to particle velocity. This allows for comparability across different datasets. The dataset is organized into four primary fault categories 0_healthy 1_bearing_faults 2_gearbox_faults 3_induction_motor_faults Each data file is stored in CSV format with a consistent structure. Column 1 represents Source 1 and Column 2 represents Source 2. Metadata includes dataset origin, sampling frequency, and operating conditions. Signals are structured to support consistent multi source analysis across different machinery types. The dataset allows for the evaluation of machine learning models under varying operating conditions, sensor configurations, and fault types within a normalized dataset. The datasets used to create this dataset include Case Western Reserve University (CWRU) [1], University of Ottawa Electric Motor Dataset Vibration and Acoustic Faults under Constant and Variable Speed Conditions (UOEMD) [2], University of Ottawa Rolling Element Bearing Dataset (UORED) [3], Huazhong University of Science and Technology Bearing Dataset (HUST) [4], Induction Motor Vibration and Acoustic Cellular Device Dataset (IM-VACD) [5], Multi mode fault diagnosis datasets of gearbox under variable working conditions [6]. References [1] Case Western Reserve University Bearing Data Center. Bearing Data Center Dataset. Case Western Reserve University. Link: https://engineering.case.edu/bearingdatacenter/download-data-file [2] University of Ottawa Electric Motor Dataset Vibration and Acoustic Faults under Constant and Variable Speed Conditions. Mendeley Data. Link: https://data.mendeley.com/datasets/msxs4vj48g/2 [3] University of Ottawa Rolling Element Bearing Dataset Vibration and Acoustic Fault Classification. Mendeley Data. Link: https://data.mendeley.com/datasets/y2px5tg92h/5 [4] Huazhong University of Science and Technology Bearing Dataset. Mendeley Data. Link: https://data.mendeley.com/datasets/cbv7jyx4p9/3 [5] Induction Motor Vibration and Acoustic Cellular Device Dataset. Mendeley Data. Link: https://data.mendeley.com/datasets/yc8yhg5xjd/1 [6] Multi mode fault diagnosis datasets of gearbox under variable working conditions. Mendeley Data. Link: https://data.mendeley.com/datasets/p92gj2732w/2

落地页
https://dx.doi.org/10.17632/3bz24t6tf4
国内可访问性
国内直连:可达 (2026-07-11 检测) 代理通道:可达 (2026-07-11 检测)
检测口径:lychee 双通道单轮探测;「直连超时」表示检测窗口内未完成,系慢或不稳定证据,不构成封锁证据。
溯源(PROV,3 条)
source_url: https://dx.doi.org/10.17632/3bz24t6tf4source_citation: mech_oam_hub datasets#485(canonical_key=doi:10.17632/3bz24t6tf4)retrieved_on: 2026-07-09asserted_by: automated_harvestnote: 采石场迁移候选;原 review_status=auto(自动晋升,非人工核验)
about_field: china_accessibilitysource_citation: KLS-009 链接健康扫描(lychee 双通道)retrieved_on: 2026-07-11asserted_by: automated_harvestnote: 定期刷新标注,仅覆盖本字段;历史结果以最新扫描为准
about_field: notessource_citation: 人工核验:zfbin(委托批次 KLS-033-B,2026-07-15)retrieved_on: 2026-07-15asserted_by: human_curatorconfidence_level: human_verifiednote: 人工改写。KLS-033 批次 B 维持判读注记